Deep Multi-Magnification Networks for Multi-Class Breast Cancer Image Segmentation

@article{Ho2021DeepMN,
  title={Deep Multi-Magnification Networks for Multi-Class Breast Cancer Image Segmentation},
  author={David Joon Ho and Dig Vijay Kumar Yarlagadda and Timothy D’alfonso and Matthew G. Hanna and Anne Grabenstetter and Peter Ntiamoah and Edi Brogi and Lee K. Tan and Thomas J. Fuchs},
  journal={Computerized medical imaging and graphics : the official journal of the Computerized Medical Imaging Society},
  year={2021},
  volume={88},
  pages={
          101866
        }
}

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